Sequential Deep Belief Networks

Acoustics, Speech and Signal Processing(2012)

引用 16|浏览75
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摘要
Previous work applying Deep Belief Networks (DBNs) to problems in speech processing has combined the output of a DBN trained over a sliding window of input with an HMM or CRF to model linear-chain dependencies in the output. We describe a new model called Sequential DBN (SDBN) that uses inherently sequential models in all hidden layers as well as in the output layer, so the latent variables can potentially model long-range phenomena. The model introduces minimal computational overhead compared to other DBN approaches to sequential labeling, and achieves comparable performance with a much smaller model (in terms of number of parameters). Experiments on TIMIT phone recognition show that including sequential information at all layers improves accuracy over baseline models that do not use sequential information in the hidden layers.
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关键词
belief networks,hidden Markov models,speech processing,speech recognition,CRF,HMM,SDBN,TIMIT phone recognition,sequential DBN,sequential deep belief networks,sequential information,sequential models,speech processing,TIMIT,deep belief network,deep learning,phone recognition
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